Which component of Bayesian inference represents the revised, updated belief about the parameter after incorporating new data?
Answer
Posterior probability distribution
The posterior probability distribution is the result of mathematically combining the prior belief with the assessment provided by the likelihood function, representing the belief state after accounting for the new evidence.

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